Jing Ning, Yunjun Yao, Joshua B. Fisher, Yufu Li, Xiaotong Zhang, Bo Jiang, Jia Xu, Ruiyang Yu, Lu Liu, Xueyi Zhang, Zijing Xie, Jiahui Fan, Luna Zhang
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The results showed that the RF-SM dataset exhibited better consistency with in situ SM observations in the detection of extremes than did the SM products, including SMAP, SMOS, NCA-LDAS, and ESA CCI, for different land cover types in the U.S. and yielded a satisfactory performance, with the lowest root mean square error (RMSE, below 0.055 m3/m3) and the highest coefficient of determination (R2, above 0.8) for most observation networks, based on the number of sites. A vegetation health index (VHI), derived from a Landsat 8 optical remote sensing dataset, was also generated for comparison. The results illustrated that the RF-SM-SWDI and VHI exhibited high correlations (R ≥ 0.5) at approximately 70% of the stations. Furthermore, we mapped spatiotemporal drought monitoring indices in California. The RF-SM-SWDI provided drought conditions with more detailed spatial information than did the short-term drought blend (STDB) released by the U.S. Drought Monitor, which demonstrated the expected response of seasonal drought trends, while differences from the VHI were observed mainly in forest areas. Therefore, downscaled SM and SWDI, with a spatial resolution of 30 m, are promising for monitoring agricultural field drought within different contexts, and additional reliable factors could be incorporated to better guide agricultural management practices.","PeriodicalId":48993,"journal":{"name":"Remote Sensing","volume":"52 1","pages":""},"PeriodicalIF":4.2000,"publicationDate":"2024-09-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Soil Moisture-Derived SWDI at 30 m Based on Multiple Satellite Datasets for Agricultural Drought Monitoring\",\"authors\":\"Jing Ning, Yunjun Yao, Joshua B. 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引用次数: 0
摘要
作为一种主要的农业灾害,干旱的发生往往是由于降水量减少导致土壤水分(SM)持续不足。评估高空间分辨率土壤水分衍生干旱指数对于监测农业干旱至关重要。在本研究中,我们生成了降尺度随机森林土壤水分数据集(RF-SM),并计算了 30 米处的土壤水分亏缺指数(RF-SM-SWDI),用于农业干旱监测。结果表明,对于美国不同的土地覆被类型,RF-SM 数据集在探测极端事件方面与原地 SM 观测数据的一致性要好于 SMAP、SMOS、NCA-LDAS 和 ESA CCI 等 SM 产品,并且性能令人满意,在大多数观测网络中,根据站点数量,RF-SM 数据集的均方根误差(RMSE,低于 0.055 m3/m3)最小,判定系数(R2,高于 0.8)最高。此外,还通过 Landsat 8 光学遥感数据集生成了植被健康指数(VHI),以进行比较。结果表明,RF-SM-SWDI 和 VHI 在约 70% 的站点表现出高度相关性(R ≥ 0.5)。此外,我们还绘制了加利福尼亚州的时空干旱监测指数图。与美国干旱监测机构发布的短期干旱混合指数(STDB)相比,RF-SM-SWDI 提供了更详细的干旱状况空间信息,显示了季节性干旱趋势的预期响应,而与 VHI 的差异主要出现在森林地区。因此,空间分辨率为 30 米的降尺度 SM 和 SWDI 有望在不同环境下监测农田干旱,并可纳入更多可靠因素,以更好地指导农业管理实践。
Soil Moisture-Derived SWDI at 30 m Based on Multiple Satellite Datasets for Agricultural Drought Monitoring
As a major agricultural hazard, drought frequently occurs due to a reduction in precipitation resulting in a continuously propagating soil moisture (SM) deficit. Assessment of the high spatial-resolution SM-derived drought index is crucial for monitoring agricultural drought. In this study, we generated a downscaled random forest SM dataset (RF-SM) and calculated the soil water deficit index (RF-SM-SWDI) at 30 m for agricultural drought monitoring. The results showed that the RF-SM dataset exhibited better consistency with in situ SM observations in the detection of extremes than did the SM products, including SMAP, SMOS, NCA-LDAS, and ESA CCI, for different land cover types in the U.S. and yielded a satisfactory performance, with the lowest root mean square error (RMSE, below 0.055 m3/m3) and the highest coefficient of determination (R2, above 0.8) for most observation networks, based on the number of sites. A vegetation health index (VHI), derived from a Landsat 8 optical remote sensing dataset, was also generated for comparison. The results illustrated that the RF-SM-SWDI and VHI exhibited high correlations (R ≥ 0.5) at approximately 70% of the stations. Furthermore, we mapped spatiotemporal drought monitoring indices in California. The RF-SM-SWDI provided drought conditions with more detailed spatial information than did the short-term drought blend (STDB) released by the U.S. Drought Monitor, which demonstrated the expected response of seasonal drought trends, while differences from the VHI were observed mainly in forest areas. Therefore, downscaled SM and SWDI, with a spatial resolution of 30 m, are promising for monitoring agricultural field drought within different contexts, and additional reliable factors could be incorporated to better guide agricultural management practices.
期刊介绍:
Remote Sensing (ISSN 2072-4292) publishes regular research papers, reviews, letters and communications covering all aspects of the remote sensing process, from instrument design and signal processing to the retrieval of geophysical parameters and their application in geosciences. Our aim is to encourage scientists to publish experimental, theoretical and computational results in as much detail as possible so that results can be easily reproduced. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.